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Lung Cancer Diagnosis System Based on Support Vector Machines and Image Processing Technique

机译:基于支持向量机和图像处理技术的肺癌诊断系统

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Most traditional medical diagnosis systems are founded on huge quantity of training data. However, on the occasion that very little volume of data is available, the traditional diagnosis systems derive defects such as larger error Focused on the solution to this problem, a medical diagnosis system based on least square support vector machines (LS-SVM) is presented. Promoted training algorithm is introduced and applied on the lung cancer diagnosis system based on chest CT image. Diagnosis parameters acquisition is achieved with image processing methods, involving binarization, object selection and perimeter extraction technique in vision domain and single-level discrete 2-D wavelet transform technique in wavelet domain. Result of system training and recognition show that when limited quantity of training data are available, the system is capable of recognizing the situation and location of lung cancer Further, the system displays superior ability of globalization to traditional systems.
机译:大多数传统的医疗诊断系统都以大量的培训数据建立起来。然而,在很少的数据量可用的情况下,传统的诊断系统导出缺陷,例如较大的误差突出的误差,对该问题的解决方案,提出了一种基于最小二乘支持向量机(LS-SVM)的医学诊断系统。基于胸部CT图像的肺癌诊断系统介绍和应用促进的培训算法。通过图像处理方法实现诊断参数采集,涉及在远景域中的二值化,对象选择和周长提取技术和小波域中的单级离散2-D小波变换技术。系统培训和识别的结果表明,当有限的培训数据可用时,该系统能够进一步识别肺癌的情况和位置,该系统显示出全球化的全球化能力。

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